Abstract
Point process generalized linear models (GLMs) provide a powerful tool for characterizing the coding properties of neural populations. Spline basis functions are often used in point process GLMs, when the relationship between the spiking and driving signals are nonlinear, but common choices for the structure of these spline bases often lead to loss of statistical power and numerical instability when the signals that influence spiking are bounded above or below. In particular, history dependent spike train models often suffer these issues at times immediately following a previous spike. This can make inferences related to refractoriness and bursting activity more challenging. Here, we propose a modified set of spline basis functions that assumes a flat derivative at the endpoints and show that this limits the uncertainty and numerical issues associated with cardinal splines. We illustrate the application of this modified basis to the problem of simultaneously estimating the place field and history dependent properties of a set of neurons from the CA1 region of rat hippocampus, and compare it with the other commonly used basis functions. We have made code available in MATLAB to implement spike train regression using these modified basis functions.
Funder
Simons Foundation
National Institutes of Health
Publisher
Public Library of Science (PLoS)
Reference57 articles.
1. A point process framework for relating neural spiking activity to spiking history, neural ensemble and extrinsic covariate effects;W Truccolo;Journal of neurophysiology,2005
2. Contrasting patterns of receptive field plasticity in the hippocampus and the entorhinal cortex: an adaptive filtering approach;LM Frank;Journal of Neuroscience,2002
3. The hippocampus as a spatial map: preliminary evidence from unit activity in the freely-moving rat;J O’Keefe;Brain research,1971
4. Predicting every spike: a model for the responses of visual neurons;J Keat;Neuron,2001
5. Fast and robust estimation of spectro-temporal receptive fields using stochastic approximations;AF Meyer;Journal of neuroscience methods,2015